# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project

import time
from collections import defaultdict
from contextlib import contextmanager
from dataclasses import dataclass
from typing import TYPE_CHECKING, Any, NamedTuple, Optional, Union

import torch
import torch.distributed as dist

import vllm.envs as envs
from vllm.config import CUDAGraphMode, ParallelConfig, VllmConfig
from vllm.logger import init_logger
from vllm.platforms import current_platform
from vllm.v1.worker.ubatch_utils import UBatchSlices, is_second_ubatch_empty

if TYPE_CHECKING:
    from vllm.attention.backends.abstract import AttentionMetadata

logger = init_logger(__name__)

track_batchsize: bool = envs.VLLM_LOG_BATCHSIZE_INTERVAL >= 0
last_logging_time: float = 0
forward_start_time: float = 0
batchsize_logging_interval: float = envs.VLLM_LOG_BATCHSIZE_INTERVAL
batchsize_forward_time: defaultdict = defaultdict(list)


class BatchDescriptor(NamedTuple):
    """
    Batch descriptor for cudagraph dispatching. We should keep the num of
    items as minimal as possible to properly and uniquely describe the padded
    batch for cudagraph.
    """
    num_tokens: int
    uniform_decode: bool = False
    """
    False can also be used for an uniform decode batch to dispatch to the 
    cudagraph supporting non-uniform batches.
    """

    @property
    def non_uniform(self) -> "BatchDescriptor":
        """
        Return a non-uniform version of current batch descriptor.
        """
        return BatchDescriptor(self.num_tokens, uniform_decode=False)


def _compute_chunked_local_num_tokens(num_tokens_across_dp_cpu: list[int],
                                      max_num_tokens: int,
                                      chunk_idx: int) -> list[int]:
    dp_size = len(num_tokens_across_dp_cpu)

    local_size = [-1] * dp_size
    for i in range(dp_size):
        dp_tokens = num_tokens_across_dp_cpu[i]
        local_size[i] = min(max_num_tokens,
                            dp_tokens - (max_num_tokens * chunk_idx))
        if local_size[i] <= 0:
            local_size[i] = 1  # ensure lockstep even if done
    return local_size


@dataclass
class DPMetadata:
    max_tokens_across_dp_cpu: torch.Tensor
    cu_tokens_across_dp_cpu: torch.Tensor
    local_sizes: Optional[list[int]] = None

    @staticmethod
    def num_tokens_across_dp(num_tokens: int, dp_size: int,
                             dp_rank: int) -> torch.Tensor:
        """
        Gather the num_tokens across all DP ranks and return results in a
        CPU tensor of size dp_size.
        """
        from vllm.distributed.parallel_state import get_dp_group
        device = current_platform.device_type
        group = get_dp_group().device_group

        # Transfering this tensor from GPU to CPU will introduce a GPU sync
        # point that could adversely affect performance of vllm with asynch
        # scheduling. This environment variable exists to quickly disable
        # this optimization if we run into this case.
        if envs.VLLM_DISABLE_NCCL_FOR_DP_SYNCHRONIZATION:
            logger.info_once(
                "Using CPU all reduce to syncronize DP padding between ranks.")
            device = "cpu"
            group = get_dp_group().cpu_group
        num_tokens_across_dp = [0] * dp_size
        num_tokens_across_dp[dp_rank] = num_tokens
        num_tokens_tensor = torch.tensor(num_tokens_across_dp,
                                         device=device,
                                         dtype=torch.int32)
        dist.all_reduce(num_tokens_tensor, group=group)
        return num_tokens_tensor.cpu()

    @staticmethod
    def should_ubatch_across_dp(
            should_ubatch: bool, orig_num_tokens_per_ubatch: int,
            padded_num_tokens_per_ubatch: int, dp_size: int,
            dp_rank: int) -> tuple[bool, Optional[torch.Tensor]]:
        """
        1. Decides if each DP rank is going to microbatch. Either all ranks
        run with microbatching or none of them do. If this function decides
        not to run with microbatching. It will "abort" meaning that no padding
        information will be returned to the caller. It will return (False, None)

        2. Determines the total number of tokens that each rank will run.
        All ranks will be padded out so that the run with the same number
        of tokens

        Returns: tuple[
            should_ubatch: Are all DP ranks going to microbatch
            num_tokens_after_padding: A tensor containing the total number of
            tokens per-microbatch for each DP rank including padding. Will be
            None if should_ubatch if False
        ]
        """

        device = current_platform.device_type
        tensor = torch.zeros(3, dp_size, device=device, dtype=torch.int32)
        tensor[0][dp_rank] = orig_num_tokens_per_ubatch
        tensor[1][dp_rank] = padded_num_tokens_per_ubatch
        tensor[2][dp_rank] = 1 if should_ubatch else 0

        from vllm.distributed.parallel_state import get_dp_group
        dist.all_reduce(tensor, group=get_dp_group().device_group)

        result: bool = bool(torch.all(tensor[2] == 1).item())
        if not result:
            return result, None

        orig_num_tokens_tensor = tensor[0, :]
        padded_num_tokens_tensor = tensor[1, :]

        orig_min_num_tokens = int(orig_num_tokens_tensor.min().item())
        padded_max_num_tokens = int(padded_num_tokens_tensor.max().item())
        if is_second_ubatch_empty(orig_min_num_tokens, padded_max_num_tokens):
            logger.debug("Aborting ubatching %s %s", orig_min_num_tokens,
                         padded_max_num_tokens)
            return False, None
        return result, padded_num_tokens_tensor.cpu()

    @staticmethod
    def make(
            parallel_config: ParallelConfig,
            attn_metadata: Any,
            num_tokens: int,
            num_tokens_across_dp: Optional[torch.Tensor] = None
    ) -> "DPMetadata":

        assert parallel_config.data_parallel_size > 1
        dp_size = parallel_config.data_parallel_size
        dp_rank = parallel_config.data_parallel_rank
        if attn_metadata is not None and hasattr(attn_metadata,
                                                 "num_prefill_tokens"):
            # for v0 attention backends
            batchsize = attn_metadata.num_prefill_tokens + \
                attn_metadata.num_decode_tokens
        else:
            # for v1 attention backends or no attn_metadata
            batchsize = num_tokens

        # If num_tokens_across_dp is None, it will be computed by all_reduce
        # Otherwise, num_tokens_across_dp[dp_rank] should be equal to batchsize
        assert (num_tokens_across_dp is None or num_tokens_across_dp[dp_rank]
                == batchsize), f"{num_tokens_across_dp[dp_rank]} {batchsize}"
        if num_tokens_across_dp is None:
            num_tokens_across_dp = DPMetadata.num_tokens_across_dp(
                batchsize, dp_size, dp_rank)
        max_tokens_across_dp_cpu = torch.max(num_tokens_across_dp)
        cu_tokens_across_dp_cpu = torch.cumsum(num_tokens_across_dp, dim=0)
        return DPMetadata(max_tokens_across_dp_cpu, cu_tokens_across_dp_cpu,
                          num_tokens_across_dp)

    @contextmanager
    def chunked_sizes(self, max_chunk_size_per_rank: int, chunk_idx: int):
        """
        Context manager to compute and temporarily set the per-rank local token
        sizes for a specific chunk during chunked forward execution.

        This is necessary to ensure each DP (data parallel) rank processes its
        designated portion of tokens in lockstep with others, even when the
        token counts are uneven or some ranks have completed their input early.

        For chunked execution, we break up the total tokens on each rank into
        multiple chunks (of at most `max_chunk_size_per_rank`), and for a given
        `chunk_idx`, this context manager sets `self.local_sizes` to the number
        of tokens to process in that chunk on each rank.

        It uses cumulative sizes (`cu_tokens_across_dp_cpu`) to derive the
        number of tokens per rank, and calls `_compute_chunked_local_num_tokens`
        to determine the chunk-wise split.

        `self.local_sizes` is only valid inside the context.

        Args:
            max_chunk_size_per_rank: The max number of tokens each rank is 
                                     allowed to process in this chunk.
            chunk_idx: The index of the chunk to compute sizes for.
        """
        cu_sizes = self.cu_tokens_across_dp_cpu
        num_tokens_across_dp_cpu = [
            (cu_sizes[i] -
             cu_sizes[i - 1]).item() if i > 0 else cu_sizes[0].item()
            for i in range(len(cu_sizes))
        ]
        self.local_sizes = _compute_chunked_local_num_tokens(
            num_tokens_across_dp_cpu, max_chunk_size_per_rank, chunk_idx)
        try:
            yield self.local_sizes
        finally:
            self.local_sizes = None

    def get_chunk_sizes_across_dp_rank(self) -> Optional[list[int]]:
        return self.local_sizes


@dataclass
class ForwardContext:
    # copy from vllm_config.compilation_config.static_forward_context
    no_compile_layers: dict[str, Any]
    """
    Type AttentionMetadata for v0, 
    Type Dict[str, AttentionMetadata] for v1, map from layer_name of each 
    attention layer to its attention metadata
    Type List[Dict[str, AttentionMetadata]] for DBO. List of size two, one
    for each microbatch.
    Set dynamically for each forward pass
    """
    attn_metadata: Union["AttentionMetadata", dict[str, "AttentionMetadata"],
                         list[dict[str, "AttentionMetadata"]]]
    # TODO: remove after making all virtual_engines share the same kv cache
    virtual_engine: int  # set dynamically for each forward pass
    # set dynamically for each forward pass
    dp_metadata: Optional[DPMetadata] = None
    # determine the cudagraph style at runtime to be FULL, PIECEWISE, or NONE.
    # by default NONE, no cudagraph is used.
    cudagraph_runtime_mode: CUDAGraphMode = CUDAGraphMode.NONE
    batch_descriptor: Optional[BatchDescriptor] = None

    ubatch_slices: Optional[UBatchSlices] = None

    def __post_init__(self):
        assert self.cudagraph_runtime_mode in [
            CUDAGraphMode.NONE, CUDAGraphMode.PIECEWISE, CUDAGraphMode.FULL], \
            f"Invalid cudagraph runtime mode: {self.cudagraph_runtime_mode}"


_forward_context: Optional[ForwardContext] = None


def get_forward_context() -> ForwardContext:
    """Get the current forward context."""
    assert _forward_context is not None, (
        "Forward context is not set. "
        "Please use `set_forward_context` to set the forward context.")
    return _forward_context


def create_forward_context(
        attn_metadata: Any,
        vllm_config: VllmConfig,
        virtual_engine: int = 0,
        dp_metadata: Optional[DPMetadata] = None,
        cudagraph_runtime_mode: CUDAGraphMode = CUDAGraphMode.NONE,
        batch_descriptor: Optional[BatchDescriptor] = None,
        ubatch_slices: Optional[UBatchSlices] = None):
    return ForwardContext(no_compile_layers=vllm_config.compilation_config.
                          static_forward_context,
                          virtual_engine=virtual_engine,
                          attn_metadata=attn_metadata,
                          dp_metadata=dp_metadata,
                          cudagraph_runtime_mode=cudagraph_runtime_mode,
                          batch_descriptor=batch_descriptor,
                          ubatch_slices=ubatch_slices)


@contextmanager
def override_forward_context(forward_context: Optional[ForwardContext]):
    """A context manager that overrides the current forward context.
    This is used to override the forward context for a specific
    forward pass.
    """
    global _forward_context
    prev_context = _forward_context
    _forward_context = forward_context
    try:
        yield
    finally:
        _forward_context = prev_context


@contextmanager
def set_forward_context(
        attn_metadata: Any,
        vllm_config: VllmConfig,
        virtual_engine: int = 0,
        num_tokens: Optional[int] = None,
        num_tokens_across_dp: Optional[torch.Tensor] = None,
        cudagraph_runtime_mode: CUDAGraphMode = CUDAGraphMode.NONE,
        batch_descriptor: Optional[BatchDescriptor] = None,
        ubatch_slices: Optional[UBatchSlices] = None):
    """A context manager that stores the current forward context,
    can be attention metadata, etc.
    Here we can inject common logic for every model forward pass.
    """
    global forward_start_time
    need_to_track_batchsize = track_batchsize and attn_metadata is not None
    if need_to_track_batchsize:
        forward_start_time = time.perf_counter()

    dp_metadata: Optional[DPMetadata] = None
    if vllm_config.parallel_config.data_parallel_size > 1 and (
            attn_metadata is not None or num_tokens is not None):
        dp_metadata = DPMetadata.make(vllm_config.parallel_config,
                                      attn_metadata, num_tokens or 0,
                                      num_tokens_across_dp)

    forward_context = create_forward_context(attn_metadata, vllm_config,
                                             virtual_engine, dp_metadata,
                                             cudagraph_runtime_mode,
                                             batch_descriptor, ubatch_slices)

    try:
        with override_forward_context(forward_context):
            yield
    finally:
        global last_logging_time, batchsize_logging_interval
        if need_to_track_batchsize:
            if hasattr(attn_metadata, "num_prefill_tokens"):
                # for v0 attention backends
                batchsize = attn_metadata.num_prefill_tokens + \
                    attn_metadata.num_decode_tokens
            else:
                # for v1 attention backends
                batchsize = num_tokens
            # we use synchronous scheduling right now,
            # adding a sync point here should not affect
            # scheduling of the next batch
            from vllm.platforms import current_platform
            synchronize = current_platform.synchronize
            if synchronize is not None:
                synchronize()
            now = time.perf_counter()
            # time measurement is in milliseconds
            batchsize_forward_time[batchsize].append(
                (now - forward_start_time) * 1000)
            if now - last_logging_time > batchsize_logging_interval:
                last_logging_time = now
                forward_stats = []
                for bs, times in batchsize_forward_time.items():
                    if len(times) <= 1:
                        # can be cudagraph / profiling run
                        continue
                    medium = torch.quantile(torch.tensor(times), q=0.5).item()
                    medium = round(medium, 2)
                    forward_stats.append((bs, len(times), medium))
                forward_stats.sort(key=lambda x: x[1], reverse=True)
                if forward_stats:
                    logger.info(("Batchsize forward time stats "
                                 "(batchsize, count, median_time(ms)): %s"),
                                forward_stats)
